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Classification of Parkinson’s disease by deep learning on midbrain MRI

Thomas Welton, Septian Hartono, Weiling Lee, Peik Yen Teh, Wenlu Hou, Robert Chun Chen, Celeste Chen, Ee Wei Lim, Kumar M. Prakash, Louis Tan, Eng King Tan, Ling Ling Chan

2024Frontiers in Aging Neuroscience23 citationsDOIOpen Access PDF

Abstract

Purpose Susceptibility map weighted imaging (SMWI), based on quantitative susceptibility mapping (QSM), allows accurate nigrosome-1 (N1) evaluation and has been used to develop Parkinson’s disease (PD) deep learning (DL) classification algorithms. Neuromelanin-sensitive (NMS) MRI could improve automated quantitative N1 analysis by revealing neuromelanin content. This study aimed to compare classification performance of four approaches to PD diagnosis: (1) N1 quantitative “QSM-NMS” composite marker, (2) DL model for N1 morphological abnormality using SMWI (“Heuron IPD”), (3) DL model for N1 volume using SMWI (“Heuron NI”), and (4) N1 SMWI neuroradiological evaluation. Method PD patients ( n = 82; aged 65 ± 9 years; 68% male) and healthy-controls ( n = 107; 66 ± 7 years; 48% male) underwent 3 T midbrain MRI with T2*-SWI multi-echo-GRE (for QSM and SMWI), and NMS-MRI. AUC was used to compare diagnostic performance. We tested for correlation of each imaging measure with clinical parameters (severity, duration and levodopa dosing) by Spearman-Rho or Kendall-Tao-Beta correlation. Results Classification performance was excellent for the QSM-NMS composite marker (AUC = 0.94), N1 SMWI abnormality (AUC = 0.92), N1 SMWI volume (AUC = 0.90), and neuroradiologist (AUC = 0.98). Reasons for misclassification were right–left asymmetry, through-plane re-slicing, pulsation artefacts, and thin N1. In the two DL models, all 18/189 (9.5%) cases misclassified by Heuron IPD were controls with normal N1 volumes. We found significant correlation of the SN QSM-NMS composite measure with levodopa dosing (rho = −0.303, p = 0.006). Conclusion Our data demonstrate excellent performance of a quantitative QSM-NMS marker and automated DL PD classification algorithms based on midbrain MRI, while suggesting potential further improvements. Clinical utility is supported but requires validation in earlier stage PD cohorts.

Topics & Concepts

MidbrainParkinson's diseaseNeuroscienceDiseasePsychologyMagnetic resonance imagingMedicineArtificial intelligencePathologyComputer scienceRadiologyCentral nervous systemParkinson's Disease Mechanisms and TreatmentsNeurological disorders and treatmentsVoice and Speech Disorders
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